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基于随机森林的婴儿脑电图睡眠纺锤波检测算法

Random Forest-based Algorithm for Sleep Spindle Detection in Infant EEG.

作者信息

Wei Lan, Ventura Soraia, Lowery Madeleine, Ryan Mary Anne, Mathieson Sean, Boylan Geraldine B, Mooney Catherine

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:58-61. doi: 10.1109/EMBC44109.2020.9176339.

Abstract

Sleep spindles are associated with normal brain development, memory consolidation and infant sleep-dependent brain plasticity and can be used by clinicians in the assessment of brain development in infants. Sleep spindles can be detected in EEG, however, identifying sleep spindles in EEG recordings manually is very time-consuming and typically requires highly trained experts. Research on the automatic detection of sleep spindles in infant EEGs has been limited to-date. In this study, we present a novel supervised machine learning-based algorithm to detect sleep spindles in infant EEG recordings. EEGs collected from 141 ex-term born infants and 6 ex-preterm born infants, recorded at 4 months of age (adjusted), were used to train and test the algorithm. Sleep spindles were annotated by experienced clinical physiologists as the gold standard. The dataset was split into training (81 ex-term), validation (30 ex-term), and testing (30 ex-term + 6 ex-preterm) set. 15 features were selected for input into a random forest algorithm. Sleep spindles were detected in the ex-term infant EEG test set with 92.1% sensitivity and 95.2% specificity. For ex-preterm born infants, the sensitivity and specificity were 80.3% and 91.8% respectively. The proposed algorithm has the potential to assist researchers and clinicians in the automated analysis of sleep spindles in infant EEG.

摘要

睡眠纺锤波与正常脑发育、记忆巩固以及婴儿睡眠依赖的脑可塑性相关,临床医生可利用它来评估婴儿的脑发育情况。睡眠纺锤波可在脑电图(EEG)中检测到,然而,手动识别脑电图记录中的睡眠纺锤波非常耗时,通常需要训练有素的专家。迄今为止,关于婴儿脑电图中睡眠纺锤波自动检测的研究还很有限。在本研究中,我们提出了一种基于监督机器学习的新型算法,用于检测婴儿脑电图记录中的睡眠纺锤波。从141名足月儿和6名早产儿在4个月(矫正后)时采集的脑电图用于训练和测试该算法。睡眠纺锤波由经验丰富的临床生理学家标注作为金标准。数据集被分为训练集(81名足月儿)、验证集(30名足月儿)和测试集(30名足月儿+6名早产儿)。选择15个特征输入随机森林算法。在足月儿脑电图测试集中检测睡眠纺锤波的灵敏度为92.1%,特异性为95.2%。对于早产儿,灵敏度和特异性分别为80.3%和91.8%。所提出的算法有潜力协助研究人员和临床医生对婴儿脑电图中的睡眠纺锤波进行自动分析。

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